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Let $X=(X_1,\ldots,X_d)$ be uniformly-distributed on the sphere of radius $\sqrt{d}$ in $\mathbb R^d$. It is well-known that in the limit $d \to \infty$, the marginal distribution of $X_1$ converges weakly to the standard normal distribution $N(0,1)$.

Question. Let $k \ge 2$ be a fixed integer. Is it true that marginal distribution of $(X_1,\ldots,X_k)$ converges (say weakly) to $N(0,I_k)$ in the limit $d \to \infty $?

Note. From this post https://mathoverflow.net/a/359747/78539, we know that the marginal distribution of $(X_1/\sqrt{d},\ldots,X_k/\sqrt{d})$ has density $$ p_k(x_1,\ldots,x_k) \propto \begin{cases}(1-\sum_{j=1}^k x_j^2)^{(d-k)/2},&\mbox{ if }\sum_{j=1}^k x_j^2 < 1,\\ 0,&\mbox{ else.} \end{cases} $$

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    $\begingroup$ yes, it is true; the $x_j^2$'s are of order $1/d$, so $(1-\sum_{j=1}^k x_j^2)^{(d-k)/2}\rightarrow \exp\left(-(d/2)\sum_{j=1}^k x_j^2\right)$ for $d\rightarrow\infty$ at fixed $k$; the normalisation constraint $\sum_{j=1}^d x_j^2=1$ introduces correlations between the $x_j$'s that become ineffective if the fraction $k/d\rightarrow 0$. $\endgroup$ Commented Oct 21, 2021 at 11:33
  • $\begingroup$ Indeed, thanks. Reached same conclusion: $(X_1,\ldots,X_k)$ has density $$ p_k(x_1,\ldots,x_k) \propto \begin{cases}(1-\sum_{j=1}^k x_j^2/d)^{(d-k)/2},&\mbox{ if }\sum_{j=1}^k x_j^2 < d,\\ 0,&\mbox{ else.} \end{cases} $$ which converges to $\dfrac{e^{-\sum_{j=1}^k x_j^2/2}}{(2\pi)^{d/2}}$ for any $k=o_d(d)$, since $(1-t/d)^{d+o_d(d)} \to e^{-t}$. $\endgroup$
    – dohmatob
    Commented Oct 21, 2021 at 11:38
  • $\begingroup$ (continued) It would then follow from Scheffé's Lemma fr.wikipedia.org/wiki/Lemme_de_Scheff%C3%A9 that the marginal distribution of $(X_1,\ldots,X_k)$ converges to $N(0,I_k)$ weakly. $\endgroup$
    – dohmatob
    Commented Oct 21, 2021 at 12:02

2 Answers 2

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A simple way to prove this is to note that the distribution of $(X_1,\dots,X_d)$ is the distribution of $$\frac{(G_1,\dots,G_d)}{\sqrt{G_1^2+\dots+G_d^2}}\sqrt d,$$ where the $G_i$'s are independent standard normal random variables. So, for a fixed $k$ and $d\ge k$, the distribution of $(X_1,\dots,X_k)$ is the distribution of $$(G_1,\dots,G_k)\frac{\sqrt d}{\sqrt{G_1^2+\dots+G_d^2}}\to(G_1,\dots,G_k)\sim N(0,I_k)$$ in probability as $d\to\infty$, by the law of large numbers and Slutsky's theorem.

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  • $\begingroup$ Nice. Thanks for a different insight. $\endgroup$
    – dohmatob
    Commented Oct 21, 2021 at 12:21
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You can deduce the result if it is already known that $X_1\to^d N(0,1)$.

The convergence in law of $(X_1,...,X_k)$ boils down, for fixed reals $t_1,...,t_k$, to the convergence of the characteristic function $E[\exp(i\sum_j t_j X_j)]$ to $\exp(-\|t\|^2/2)$. For each $d$, pick a rotation $P\in O(d)$ such that the first row is $(t_1,...,t_k,0,0,...,0)/\|t\|$. Then $Y=PX$ is also uniformly distributed on the sphere, hence $Y_1=(PX)_1 \to^d N(0,1)$ by what is already known, and consequently $E[\exp(i\sum_j t_j X_j)]=E[\exp(i \|t\| Y_1)]$ converges to $\exp(-\|t\|^2/2)$.

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